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Towards predicting spatial complexity: a learning classifier system approach to the identification of cellular automata

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4 Author(s)
L. Bull ; Fac. of Comput., Eng. & Math. Sci., West of England Univ., Bristol, UK ; I. Lawson ; A. Adamatzky ; B. DeLacyCostello

This paper presents a novel approach to the programming of automata-based simulation and computation using a machine learning technique. The identification of lattice-based automata for real-world applications is cast as a data mining problem. Our approach to achieving this is to use evolutionary computing and reinforcement learning with performance fed back indicating the predictive accuracy of future behaviour of the given system. The purpose of this work is to develop an approach to identifying automata rules that can achieve good performance using data from a variety of kinds of complex systems

Published in:

2005 IEEE Congress on Evolutionary Computation  (Volume:1 )

Date of Conference:

5-5 Sept. 2005